| Literature DB >> 27134693 |
Adrien Saumard1, Jon A Wellner2.
Abstract
We review and formulate results concerning log-concavity and strong-log-concavity in both discrete and continuous settings. We show how preservation of log-concavity and strongly log-concavity on ℝ under convolution follows from a fundamental monotonicity result of Efron (1969). We provide a new proof of Efron's theorem using the recent asymmetric Brascamp-Lieb inequality due to Otto and Menz (2013). Along the way we review connections between log-concavity and other areas of mathematics and statistics, including concentration of measure, log-Sobolev inequalities, convex geometry, MCMC algorithms, Laplace approximations, and machine learning.Entities:
Keywords: concave; convex; convolution; inequalities; log-concave; monotone; preservation; strong log-concave
Year: 2014 PMID: 27134693 PMCID: PMC4847755 DOI: 10.1214/14-SS107
Source DB: PubMed Journal: Stat Surv